Reprexes for dbplyr

If you’re reporting a bug in dbplyr, it is much easier for me to help you if you can supply a reprex that I can run on my computer. Creating reprexes for dbplyr is particularly challenging because you are probably using a database that you can’t share with me. Fortunately, in many cases you can still demonstrate the problem even if I don’t have the complete dataset, or even access to the database system that you’re using.

This vignette outlines three approaches for creating reprexes that will work anywhere:

library(dplyr)
library(dbplyr)

Using memdb_frame()

The first place to start is with SQLite. SQLite is particularly appealing because it’s completely embedded instead an R package so doesn’t have any external dependencies. SQLite is designed to be small and simple, so it can’t demonstrate all problems, but it’s easy to try out and a great place to start.

You can easily create a SQLite in-memory database table using memdb_frame():

mf <- memdb_frame(g = c(1, 1, 2, 2, 2), x = 1:5, y = 5:1)
mf
#> # Source:   table<dbplyr_001> [?? x 3]
#> # Database: sqlite 3.34.1 [:memory:]
#>       g     x     y
#>   <dbl> <int> <int>
#> 1     1     1     5
#> 2     1     2     4
#> 3     2     3     3
#> 4     2     4     2
#> # … with more rows

mf %>% 
  group_by(g) %>% 
  summarise_all(mean, na.rm = TRUE)
#> # Source:   lazy query [?? x 3]
#> # Database: sqlite 3.34.1 [:memory:]
#>       g     x     y
#>   <dbl> <dbl> <dbl>
#> 1     1   1.5   4.5
#> 2     2   4     2

Reprexes are easiest to understand if you create very small custom data, but if you do want to use an existing data frame you can use tbl_memdb():

mtcars_db <- tbl_memdb(mtcars)
mtcars_db %>% 
  group_by(cyl) %>% 
  summarise(n = n()) %>% 
  show_query()
#> <SQL>
#> SELECT `cyl`, COUNT(*) AS `n`
#> FROM `mtcars`
#> GROUP BY `cyl`

Translating verbs

Many problems with dbplyr come down to incorrect SQL generation. Fortunately, it’s possible to generate SQL without a database using lazy_frame() and tbl_lazy(). Both take an con argument which takes a database “simulator” like simulate_postgres(), simulate_sqlite(), etc.

x <- c("abc", "def", "ghif")

lazy_frame(x = x, con = simulate_postgres()) %>% 
  head(5) %>% 
  show_query()
#> <SQL>
#> SELECT *
#> FROM `df`
#> LIMIT 5

lazy_frame(x = x, con = simulate_mssql()) %>% 
  head(5) %>% 
  show_query()
#> <SQL>
#> SELECT TOP 5 *
#> FROM `df`

If you isolate the problem to incorrect SQL generation, it would be very helpful if you could also suggest more appropriate SQL.

Translating individual expressions

In some cases, you might be able to track the problem down to incorrect translation for a single column expression. In that case, you can make your reprex even simpler with translate_sql():

translate_sql(substr(x, 1, 2), con = simulate_postgres())
#> <SQL> SUBSTR(`x`, 1, 2)
translate_sql(substr(x, 1, 2), con = simulate_sqlite())
#> <SQL> SUBSTR(`x`, 1, 2)